Disclosed are implementations, including a method that includes obtaining measurement samples relating to electrical operation of an electric motor drive providing power to an electric motor, deriving, based on the samples, instantaneous estimates for parameters characterizing speed and/or position of the motor according to an optimization process based on a cost function defined for the samples, and applying a filtering operation to the instantaneous estimates to generate filtered values of the motor's speed and/or position. The filtering operation includes computing the filtered values using the derived instantaneous estimates in response to a determination that a computed convexity of the cost function is greater than or equal to a convexity threshold value, and/or applying a least-squares filtering operation to the derived instantaneous estimates and using at least one set of previous estimates derived according to the optimization process applied to previous measurement samples.
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17. A method comprising:
obtaining one or more measurement samples relating to electrical operation of an electric motor drive providing power to an electric motor;
deriving, based on a cost function associated with a state space model and on the one or more measurement samples, a present estimate for a parameter characterizing the electric motor;
determining an estimate for the parameter characterizing the electric motor by applying a filtering operation to the derived present estimate and a previous estimate for the parameter derived based on previous one or more measurement samples; and
applying a perturbation input signal to the electric motor drive, wherein the perturbation input signal is a periodical signal that has a magnitude that decreases as rotational speed of the electric motor drive increases.
1. A method comprising:
obtaining one or more measurement samples relating to electrical operation of an electric motor drive providing power to an electric motor;
deriving, based on a cost function associated with a state space model and on the one or more measurement samples, a present estimate for a parameter characterizing the electric motor; and
determining an estimate for the parameter characterizing the electric motor by applying a filtering operation to the derived present estimate and a previous estimate for the parameter derived based on previous one or more measurement samples,
wherein determining the estimate for the parameter by applying the filtering operation includes:
applying a selective filter as the filtering operation to select, based on the cost function, one of: i) the derived present estimate for the parameter, or ii) the previous estimate for the parameter derived based on previous one or more measurement samples for the electric motor drive,
wherein the estimate for the parameter is determined based on the selected one of the derived present estimate for the parameter or the previous estimate for the parameter.
19. A system comprising:
an electric motor drive configured to be electrically coupled to an electric motor and to provide power to the electric motor;
a sensor configured to output one or more measurement samples relating to electrical operation of the electric motor drive; and
a controller coupled to the electric motor drive and to the sensor, and including an electronic processor, the controller configured to:
obtain the one or more measurement samples relating to electrical operation of the electric motor drive;
derive, based on a cost function associated with a state space model and on the one or more measurement samples, a present estimate for a parameter characterizing the electric motor;
determine an estimate for the parameter characterizing the electric motor by applying a filtering operation to the derived present estimate and a previous estimate for the parameter derived based on previous one or more measurement samples; and
apply a perturbation input signal to the electric motor drive, wherein the perturbation input signal is a periodical signal that has a magnitude that decreases as rotational speed of the electric motor drive increases.
11. A system comprising:
an electric motor drive configured to be electrically coupled to an electric motor and to provide power to the electric motor;
a sensor configured to output one or more measurement samples relating to electrical operation of the electric motor drive; and
a controller coupled to the electric motor drive and to the sensor, and including an electronic processor, the controller configured to:
obtain the one or more measurement samples relating to electrical operation of the electric motor drive,
derive, based on a cost function associated with a state space model and on the one or more measurement samples, a present estimate for a parameter characterizing the electric motor; and
determine an estimate for the parameter characterizing the electric motor by applying a filtering operation to the derived present estimate and a previous estimate for the parameter derived based on previous one or more measurement samples,
wherein, to determine the estimate for the parameter by applying the filtering operation, the controller is configured to:
apply a selective filter as the filtering operation to select, based on the cost function, one of: i) the derived present estimate for the parameter, or ii) the previous estimate for the parameter derived based on previous one or more measurement samples for the electric motor drive, and
wherein the estimate for the parameter is determined based on the selected one of the derived present estimate for the parameter or the previous estimate for the parameter.
16. A method comprising:
obtaining one or more measurement samples relating to electrical operation of an electric motor drive providing power to an electric motor;
deriving, based on a cost function associated with a state space model and on the one or more measurement samples, a present estimate for a parameter characterizing the electric motor, wherein the parameter is motor speed;
determining an estimate for the motor speed by applying a filtering operation to the derived present estimate and a previous estimate for the motor speed derived based on previous one or more measurement samples,
deriving, based on the cost function associated with the state space model and on the one or more measurement samples, a second present estimate for a second parameter characterizing the electric motor, wherein the second parameter is motor position; and
determining a second estimate for the motor position by applying the filtering operation to the derived second present estimate and a previous second estimate for the motor position derived based on the previous one or more measurement samples;
wherein determining the estimate for the motor speed and the second estimate for the motor position further includes:
applying an output filter that includes a dual phase locked loop tracking operation including a speed estimation phase locked loop and a position estimation phase locked loop, wherein applying the output filter includes:
receiving dual inputs including a selected one of the derived present estimate or the previous estimate for the motor speed, and a selected one of the derived second present estimate or the previous second estimate for the motor position,
applying the speed estimation phase locked loop tracking operation to the dual inputs and outputting a speed estimation, and
applying the position estimation phase locked loop tracking operation to the dual inputs and outputting a position estimation.
18. A system comprising:
an electric motor drive configured to be electrically coupled to an electric motor and to provide power to the electric motor;
a sensor configured to output one or more measurement samples relating to electrical operation of the electric motor drive; and
a controller coupled to the electric motor drive and to the sensor, and including an electronic processor, the controller configured to:
obtain the one or more measurement samples relating to electrical operation of the electric motor drive;
derive, based on a cost function associated with a state space model and on the one or more measurement samples, a present estimate for a parameter characterizing the electric motor, wherein the parameter is motor speed;
determine an estimate for the motor speed by applying a filtering operation to the derived present estimate and a previous estimate for the motor speed derived based on previous one or more measurement samples,
derive, based on the cost function associated with the state space model and on the one or more measurement samples, a second present estimate for a second parameter characterizing the electric motor, wherein the parameter is motor position; and
determine a second estimate for the motor position by applying the filtering operation to the derived second present estimate and a previous second estimate for the motor position derived based on the previous one or more measurement samples,
wherein to determine the estimate for the motor speed and the second estimate for the motor position, the controller is configured to:
apply an output filter that includes a dual phase locked loop tracking operation including a speed estimation phase locked loop and a position estimation phase locked loop, wherein applying the output filter includes:
receiving dual inputs including a selected one of the derived present estimate or the previous estimate for the motor speed, and a selected one of the derived second present estimate or the previous second estimate for the motor position,
applying the speed estimation phase locked loop to the dual inputs and outputting a speed estimation, and
applying the position estimation phase locked loop to the dual inputs and outputting a position estimation.
2. The method of
executing an optimization process that includes iteratively solving the cost function and evaluating solutions of the cost function using a convergence criterion.
3. The method of
applying an output filter to the selected one of the derived present estimate or the previous estimate for the parameter, wherein the output filter includes one or both of:
a least-squares filtering operation, and
a phase locked loop tracking operation.
4. The method of
deriving, based on the cost function associated with the state space model and on the one or more measurement samples, a second present estimate for a second parameter characterizing the electric motor; and
determining a second estimate for the second parameter characterizing the electric motor by applying the filtering operation to the derived second present estimate and a previous second estimate for the second parameter derived based on the previous one or more measurement samples.
5. The method of
applying an output filter that includes a dual phase locked loop tracking operation including a speed estimation phase locked loop and a position estimation phase locked loop, wherein applying the output filter includes:
receiving dual inputs including the selected one of the derived present estimate or the previous estimate for the parameter, and a selected one of the derived second present estimate or the previous second estimate,
applying the speed estimation phase locked loop tracking operation to the dual inputs and outputting a speed estimation, and
applying the position estimation phase locked loop tracking operation to the dual inputs and outputting a position estimation.
6. The method of
wherein the parameter characterizing the electric motor is a speed of the electric motor or a position of the electric motor.
7. The method of
controlling, by the electric motor drive, operation of the electric motor based on the estimate for the parameter.
8. The method of
9. The method of
10. The method of
12. The system of
execute an optimization process that includes iteratively solving the cost function and evaluating solutions of the cost function using a convergence criterion.
13. The system of
apply an output filter to the selected one of the derived present estimate or the previous estimate for the parameter, wherein the output filter includes one or both of:
a least-squares filtering operation, and
a phase locked loop tracking operation.
14. The system of
derive, based on the cost function associated with the state space model and on the one or more measurement samples, a second present estimate for a second parameter characterizing the electric motor; and
determine a second estimate for the second parameter characterizing the electric motor by applying the filtering operation to the derived second present estimate and a previous second estimate for the second parameter derived based on the previous one or more measurement samples.
15. The system of
apply an output filter that includes a dual phase locked loop tracking operation including a speed estimation phase locked loop and a position estimation phase locked loop, wherein applying the output filter includes:
receiving dual inputs including the selected one of the derived present estimate or the previous estimate for the parameter, and a selected one of the derived second present estimate or the previous second estimate,
applying the speed estimation phase locked loop to the dual inputs and outputting a speed estimation, and
applying the position estimation phase locked loop to the dual inputs and outputting a position estimation.
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This application is the continuation of U.S. application Ser. No. 16/697,630 filed on Nov. 27, 2019, which claims priority to, and the benefit of, U.S. Provisional Application Nos. 62/773,896 entitled “Systems and Methods for Improved Convergence And Robustness Properties of Optimization-Based Position and Speed Estimation” and filed Nov. 30, 2018, and 62/926,913 entitled “Systems and Methods For High Performance Selective and Output Filter Techniques For Sensorless Direct Position And Speed Estimation” and filed Oct. 28, 2019, the contents of which are incorporated herein by reference in their entireties.
Synchronous motor drives require an accurate rotor position and speed information for high performance control. Position sensorless estimation schemes have been introduced to remove the cost of a resolver or encoder and improve their reliability by removing a single point of failure. Use of position/speed sensorless estimation is especially compelling in mass-produced drive systems (e.g. in hybrid and electric vehicles), when the machine is physically distant from the motor controller (e.g. pumps for underground mining or wind power plants with converter at the tower base), when the available space for a motor drive is restricted (e.g. low power drives), when the drive system operates in hazardous or clean environments, when physical contact between stator and rotor is undesired, or in other circumstances. Currently, obtaining estimate convergence and/or robustness guarantees is difficult to achieve due to the nonlinearity of the problem statement.
Disclosed are systems, methods, and other implementations for high performance filter techniques for direct position and speed estimation for an electric motor drive to augment its robustness against disturbances. The direct estimation concept provides an independent position and speed estimate at each sampling instant by solving an optimization problem parameterized with the current, current derivative, and/or the voltage signal for the system. Once the estimates are derived by the optimization process, one or more filters are applied to the estimates, including a selective filter to accept or discard the estimates based on criteria that assess the robustness of the estimates, a filter applied to the instantaneous estimates and previous estimates based, for example, on a least squares approach, and/or a dual PLL filtering implementation, as well as other filtering approaches. The approaches described herein can operate at any speed, and can employ a voltage injection approach at low speed, or PWM current derivative. Robustness of the solutions for the estimates can be further improved using appropriately configured perturbation signals.
The present discusses four example techniques, namely technique A (selective filtering), technique B (FIR filtering), technique C (dual PLL), and technique D (high-frequency perturbation method also called high-frequency injection), that can be combined in various ways and configurations to improve speed and position estimation for an electric motor. Additional filtering techniques, stages, and approaches, other than the four examples of techniques A-D, can also be incorporated into implementations of the systems and methods described herein. In some embodiments, the example techniques may apply to different stages of the estimation process. For example:
In some embodiments, implementations of the systems described herein may include, for example, optional use of technique A, optionally in conjunction with Technique B or Technique C (alternatively, both techniques B and C may be used in tandem, with or without technique A). Technique D (or some variation thereof) can optionally be used independently of use of any of techniques A, B, and or C.
In some variations, a method is provided that includes obtaining one or more measurement samples relating to electrical operation of an electric motor drive providing power to an electric motor, deriving based on the one or more measurement samples instantaneous estimates for parameters characterizing one or more of a speed and a position of the electric motor according to an optimization process that is based on a cost function defined for the one or more measurement samples, and applying a filtering operation to the derived instantaneous estimates to generate refined filtered values of the speed and position for the electric motor. Applying the filtering operation may include one or more of, for example, computing the filtered values of the speed and position for the electric motor using the derived instantaneous estimates in response to a determination that a computed convexity of the cost function around the derived instantaneous estimates is greater than or equal to a convexity threshold value, and/or applying a least-squares filtering operation, yielding the filtered values for the speed and position of the electric motor, according to the derived instantaneous estimates and using at least one set of previous estimates derived according to the optimization process applied to previous one or more measurement samples.
Embodiments of the method may include at least some of the features described in the present disclosure, including one or more of the following features.
The method may further include computing the filtered values of the speed and position for the electric motor using previous instantaneous estimates, derived based on previous one or more measurement samples for the electric motor drive, without using the presently derived instantaneous values, when the convexity of the cost function around the derived instantaneous estimates is below the convexity threshold value.
Applying the filtering operation to the derived instantaneous estimates may include determining the filtered values for the speed and position values for the electric motor according to independent phase locked loop units applied to estimates of the speed and position determined according to the optimization process based on the cost function defined for the one or more measurement samples.
Applying the least-squares filtering operation may include applying the least-squares filtering operation with a finite impulse response filter.
The method may further include applying a perturbation input signal to the electric motor drive.
The perturbation input signal may have a magnitude that decreases as rotational speed of the electric motor drive increases.
The perturbation signal may include periodical portions of rising and falling sections approximating linear segments with slopes exceeding respective minimum slope thresholds required to increase robustness of a solution of the cost function for the one or more measurement samples, to reduce variation of the solution for the cost function as a result of noise in the one or more measurement samples. The periodical signal may include a triangular periodical signal with rising and falling slopes exceeding the respective minimum required slope thresholds.
Obtaining the one or more measurement samples may include obtaining one or more of, for example, controlled current provided to the electric motor by the motor drive, a derivative of the controlled current, and/or a control signal provided as input to the electric motor drive.
In some variations, a system is provided that includes an electric motor, an electric motor drive electrically coupled to the electric motor and providing power to the electric motor, at least one of a current sensor or a voltage sensor to obtain one or more measurement samples relating to electrical operation of the electric motor drive, and a controller. The controller is configured to derive based on the one or more measurement samples instantaneous estimates for parameters characterizing one or more of a speed and a position of the electric motor according to an optimization process that is based on a cost function defined for the one or more measurement samples, and apply a filtering operation to the derived instantaneous estimates to generate refined filtered values of the speed and position for the electric motor. The controller configured to apply the filtering operation is configured to perform one or more of, for example, compute the filtered values of the speed and position for the electric motor using the derived instantaneous estimates in response to a determination that a computed convexity of the cost function around the derived instantaneous estimates is greater than or equal to a convexity threshold value, and/or apply a least-squares filtering operation, yielding the filtered values for the speed and position of the electric motor drive, according to the derived instantaneous estimates and using at least one set of previous estimates derived according to the optimization process applied to previous one or more measurement samples.
Embodiments of the system may include at least some of the features described in the present disclosure, including at least some of the features described above in relation to the method, as well as one or more of the following features.
The controller configured to apply the filtering operation may be configured to compute the filtered values of the speed and position for the electric motor using previous instantaneous estimates, derived based on previous one or more measurement samples for the electric motor drive, without using the presently derived instantaneous values, when the convexity of the cost function around the derived instantaneous estimates is below the convexity threshold value.
The controller configured to apply the filtering operation to the derived instantaneous estimates may be configured to determine the filtered values for the speed and position values for the electric motor according to independent phase locked loop units applied to estimates of the speed and position determined according to the optimization process based on the cost function defined for the one or more measurement samples.
The controller configured to apply the least-squares filtering operation may be configured to apply the least-squares filtering operation with a finite impulse response filter.
The controller may further be configured to apply a perturbation input signal to the electric motor drive.
The at least one of the current sensor or the voltage sensor configured to obtain the one or more measurement samples may be configured to obtain one or more of, for example, controlled current provided to the electric motor by the motor drive, a derivative of the controlled current, or a control signal provided as input to the electric motor drive.
In some variations, a non-transitory computer readable media is provided, that includes instructions executable on a processor-based device to obtain one or more measurement samples relating to electrical operation of an electric motor drive providing power to an electric motor, derive based on the one or more measurement samples instantaneous estimates for parameters characterizing one or more of a speed and a position of the electric motor according to an optimization process that is based on a cost function defined for the one or more measurement samples, and apply a filtering operation to the derived instantaneous estimates to generate refined filtered values of the speed and position for the electric motor. The instructions to apply the filtering operation include one or more instructions to perform one or more of, for example, compute the filtered values of the speed and position for the electric motor using the derived instantaneous estimates in response to a determination that a computed convexity of the cost function around the derived instantaneous estimates is greater than or equal to a convexity threshold value, and/or apply a least-squares filtering operation, yielding the filtered values for the speed and position of the electric motor drive, according to the derived instantaneous estimates and using at least one set of previous estimates derived according to the optimization process applied to previous one or more measurement samples.
Embodiments of the computer readable media is may include at least some of the features described in the present disclosure, including at least some of the features described above in relation to the method, and the system.
In some variations, an additional method is provided that includes obtaining one or more measurement samples relating to electrical operation of an electric motor drive providing power to an electric motor, deriving based on the one or more measurement samples instantaneous estimates for parameters characterizing one or more of a speed and a position of the electric motor according to an optimization process that is based on a cost function defined for the one or more measurement samples, and selecting as output values of the optimization process one of: i) the derived instantaneous estimates in response to a determination that a computed convexity of the cost function around the derived instantaneous estimates is greater than or equal to a convexity threshold value, or ii) previous instantaneous estimates, derived based on previous one or more measurement samples for the electric motor drive, without using the presently derived instantaneous values, when the convexity of the cost function around the derived instantaneous estimates is below the convexity threshold value. The additional method further includes computing filtered values for the speed and position of the electric motor using the selected output values of the optimization process.
Embodiments of the additional method may include at least some of the features described in the present disclosure, including at least some of the features described above in relation to the first method, the system, and the computer readable media, as well as one or more of the following features.
The method may further include applying a least-squares filtering operation to the output values of the optimization process, yielding the filtered values for the speed and position of the electric motor, according to the derived instantaneous estimates and using at least one set of previous estimates derived according to the optimization process applied to previous one or more measurement samples.
The method may further include determining the filtered values for the speed and position values for the electric motor according to independent phase locked loop units applied to estimates of the speed and position determined according to the optimization process.
The method may further include applying a perturbation input signal to the electric motor drive.
Other features and advantages of the invention are apparent from the following description, and from the claims.
These and other aspects will now be described in detail with reference to the following drawings.
Like reference symbols in the various drawings indicate like elements.
Described herein are methods, systems, devices, circuits, and other implementation to determine accurate and robust estimates of speed and position for a sensorless electric motor system to control the motor drive coupled to the motor (the motor drive generates the AC currents supplied to the motor to cause the required motion). To improve robustness of the estimates, various filtering operations, and other approaches (e.g., injection of a carefully generated perturbation signal satisfying certain criteria to improve robustness of the derived estimates) are performed to generate or process estimates derived via an optimization process applied to present samples. For example, to achieve high performance operation, a selective filter concept is proposed that discards samples lacking robustness based on cost function properties. The concept is most effective in removing worst case errors (which can be reduced by a factor of approximately 4). Additional output filtering techniques may be used with or without the selective filter approach to improve the estimates. For example, output filters can store past samples, such past samples may be used in the filtering operation(s). Furthermore, because direct estimation issues an independent position and speed estimate, both position and speed estimates may be used for filtering.
In some embodiments, a finite impulse response (FIR) structure is proposed that filters estimates according to a least-square criterion and is effective in reducing average estimation errors. For example, an FIR filter may be implemented that fits the past N samples (or the estimates derived from those samples) according to a least-squares criterion or some other criteria. Testing and experimentation showed that this approach can decrease the estimation noise with no compromise in terms of dynamics up to N=5, and a limited decrease of dynamics at higher N. At the test bench implemented to test the approaches described herein, the practical bandwidth was found to be 6.8 kHz for N∈[0, 5], 4.3 kHz for N∈[6, 8], and 2.3 kHz for N∈[9, 12]. Additionally or alternatively, a dual-PLL output filter is proposed and evaluated. The concept achieves a 1 kHz bandwidth compared to about 50 Hz of a conventional PLL and acts as a benchmark reference for the FIR filter approach. Hence, direct estimation with FIR or dual-PLL output filters can achieve a 10 to 100 times higher bandwidth than a conventional PLL at the same absolute mean error (<1%). Furthermore, the FIR implementation has 5 times the bandwidth of the dual-PLL at a similar noise.
As will be discussed in greater detail below, performance improvements (in terms of accuracy and robustness) for the position and rotational speed estimates can further be achieved by injecting a perturbation signal (particularly at relatively low rotational speeds) into the sensorless motor drive, with the perturbation signal having properties (as will become apparent below) that improve the robustness of the estimates. Examples of perturbation signal properties that are effective in improving estimate robustness include the use of periodic signals that have, at least during some portions of their periods, linear slope segments that exceed some pre-determined slope threshold. An example of such a periodic signal that was determined to be effective is a triangular perturbation signal.
Accordingly, in some embodiments, a method is provided that includes obtaining one or more measurement samples relating to electrical operation of an electric motor drive providing power to the electric motor, deriving based on the one or more measurement samples instantaneous estimates for parameters characterizing one or more of a speed and a position of the electric motor drive according to an optimization process that is based on a cost function defined for the one or more measurement samples, and applying a filtering operation to the derived instantaneous estimates to refine outputted values of the speed and position for the electric motor. Applying the filtering operation includes one or more of, for example, computing the filtered values of the speed and position for the electric motor using the derived instantaneous estimates in response to a determination that a computed convexity of the cost function around the derived instantaneous estimates is greater than or equal to a convexity threshold value, and/or applying a least-squares filtering operation, yielding the filtered values for the speed and position of the electric motor, according to the derived instantaneous estimates and using at least one set of previous estimates derived according to the optimization process applied to previous one or more measurement samples.
In some examples, the method may further include computing the filtered values of the speed and position for the electric motor using estimates, derived based on previous one or more measurement samples for the electric motor drive without using the presently derived instantaneous values, when the convexity of the cost function around the derived instantaneous estimates is below the convexity threshold value. In some embodiments, applying the filtering operation to the derived instantaneous estimates may include determining the filtered values for the speed and position values for the electric motor according to independent phase locked loop units applied to estimates of the speed and position determined according to the optimization process based on the cost function defined for the one or more measurement samples.
In some implementations, the method may further include applying a perturbation input signal to the electric motor drive. The perturbation input signal may have a magnitude that decreases as rotational speed of the electric motor drive increases. In some situations, the perturbation signal may include periodical portions of rising and falling sections approximating linear segments with slopes exceeding respective minimum slope thresholds required to increase robustness of a solution of the cost function for the one or more measurement samples to reduce variation of the solution for the cost function as a result of noise in the one or more measurement samples. In some examples, the periodical signal comprises a triangular periodical signal with rising and falling slopes exceeding the respective minimum required slope thresholds. Obtaining the one or more measurement samples may include obtaining one or more of, for example, an output current of the electric motor drive, and/or an output voltage of the electric motor drive.
In some variations, a system is provided that includes an electric motor, an electric motor drive electrically coupled to the electric motor and providing power to the electric motor, at least one of a current sensor or a voltage sensor to obtain one or more measurement samples relating to electrical operation of the electric motor drive, and a controller (e.g., a processor-based controller). The controller is configured to derive based on the one or more measurement samples instantaneous estimates for parameters characterizing one or more of a speed and a position of the electric motor according to an optimization process that is based on a cost function defined for the one or more measurement samples, and apply a filtering operation to the derived instantaneous estimates to generate refined filtered values of the speed and position for the electric motor. The controller configured to apply the filtering operation is configured to perform one or more of, for example, compute the filtered values of the speed and position for the electric motor using the derived instantaneous estimates in response to a determination that a computed convexity of the cost function around the derived instantaneous estimates is greater than or equal to a convexity threshold value, and/or apply a least-squares filtering operation, yielding the filtered values for the speed and position of the electric motor drive, according to the derived instantaneous estimates and using at least one set of previous estimates derived according to the optimization process applied to previous one or more measurement samples.
Thus, with reference to
Operation of a speed-controlled motor drive will next be described. Operation of the drive 112 is based on an input signal, Vαβ, that is derived by a motor control circuitry 120 (which in the schematic diagram of
Thus, the signal Vαβ, based on which the actuating AC currents driving the motor 114 are generated, requires reliable estimates of the instantaneous rotational speed and position of the rotor of the motor 114. In the embodiments described herein, the rotational speed {circumflex over (ω)}f* and the rotational position {circumflex over (θ)}f* of are derived according to an optimization process realized according to a direct estimation circuit/unit 150 in
As further illustrated in
The position and speed values selected by the selective filter 154 may be provided directly to the motor control circuitry 120, or, in some embodiments (and as also depicted in
In some embodiments, the output filter 156 may include a dual phase-lock-loop (PLL) 160 to determine subsequent speed and position values for the electric motor drive according to independent phase locked loop units applied to each of the outputted values of the speed and position determined (by the optimization unit 152) according to the optimization process based on the cost function defined for the one or more measurement samples. A dual-PLL concept uses a position PLL in parallel with a speed loop resulting from the independence of the speed estimate provided by the direct estimation circuitry 150. The dual-PLL implementation has, in some embodiments, a 1 kHz estimation bandwidth, which is more than a factor 10 higher than a conventional PLL (e.g., 50 Hz), and acts as a benchmark reference to the FIR filter 158, which achieves a 6.8 kHz bandwidth at similar absolute mean estimation errors (<1%). The dual PLL 160 may be used in conjunction with the selective filter 154, the filter 158, or both the selective filter 154 and the filter 158.
As noted, the direct estimation circuitry 150 includes the optimization unit 152 that derives independent position and speed estimates corresponding to the electric motor 114 (those estimates are then used to determine a drive control signal Vαβ to control the motor drive 112 (generating the currents driving the motor). Direct parameter estimation targets the estimation of the unknown parameters z∈⊆l from the nonlinear dynamic system {dot over (x)}=f(x,u,z)+w, with states x∈⊆n and inputs u∈⊆m in presence of an unknown bounded disturbance w∈={w∈2|∥w∥≤W} at time instant t. For simplicity of notation, a continuous-time derivative {dot over (x)} is obtained from two adjacent x in sampled systems. Assume that f:×××→n is smooth and the sets , , , and are convex. Direct estimation uses the known states x and inputs u to generate an estimate {circumflex over (z)}=z+{tilde over (z)}, where {tilde over (z)} is the estimation error. The residuals of the dynamic system,
r({circumflex over (z)})=f(x,u,{circumflex over (z)})−{dot over (x)}+w, (1)
act as a qualifier of an estimate {circumflex over (z)}. For w=0, r({circumflex over (z)})=0 is a necessary condition such that {circumflex over (z)}=z, i.e., {circumflex over (z)}=0. In these conditions, {circumflex over (z)}=z, implies r({circumflex over (z)})=0, but the reverse is not true in general and additional provisions are necessary. Since w≠0, direct parameter estimation fits the parameters in a nonlinear least squares sense with the optimization problem:
{circumflex over (z)}*=arg{circumflex over (z)}∈D min c({circumflex over (z)})=∥r({circumflex over (z)})∥2=r({circumflex over (z)})′r({circumflex over (z)}) (2)
with a cost function c:→ and search domain ⊆. When solving Equation (2), w is unknown and assumed to be zero.
For estimation purposes the optimizer {circumflex over (z)}* has to be unique, which is provided if c({circumflex over (z)}) is strictly convex on . In these conditions, {circumflex over (z)}*=z if w=0. Any disturbance w≠0 will result in a nonzero estimation error, i.e., ∥{circumflex over (z)}*−z∥>0. However, it can be shown that ∥{circumflex over (z)}*−z∥>Zw for any bounded disturbance ∥w∥<W if c({circumflex over (z)}) is strictly convex on . The search domain D can be computed explicitly but the required programs are np-hard for nonlinear systems in general. Hence, its computation can be replaced with convexity checks in real-time implementations.
For control purposes, the armature (stator) flux and currents of synchronous machines, e.g., permanent magnet (pmsm) machines, wound rotor (without damper windings) machines, and reluctance machines (rsm) are linked using the dq reference frame,
λdq=l∘idq≈Lidq+ψr, (3)
where l:2→2 is the nonlinear map that links dq current and flux globally. The nonlinear map can be computed using finite element analysis (FEA) or measured experimentally. For control purposes, this relation is often approximated by an affine map with parameters L=diag[Ld, Lq] and ψr=[ψ, 0]′, where Ld and Lq are the d and q axis inductances, and is the rotor flux magnitude, with ′ denoting the transpose operator.
It is assumed that the affine approximation is a fit with reasonable accuracy, e.g., using optimized parameters. The implicit position dependence of the dq reference frame is made explicit by transforming into the static αβ system with the Park transformation P(θ)=[[cos θ, −sin θ], [sin θ, cos θ]′], which is orthogonal (P−1(θ)=P′(θ)),
λαβ=P(θ)LP(θ)iαβ+P′(θ)ψr (4)
where λdq=P(θ)λαβ and idq=P(θ)iαβ. Deriving this expression with respect to time results in the dynamic synchronous machine model
where LΣ=(Ld+Lq)/2 and LΔ=(Ld−Lq)/2 is the sum and difference inductance, respectively. The compensated terminal voltage
Direct position and speed estimation use the dynamic model of Equation (5), above, to derive estimates. The numerical performance of the cost function is improved by normalizing the estimates with {circumflex over (z)}=[{circumflex over (θ)}/Θ,ω/Ω]′, where Θ=π is the rated position and Ω∈>0 is the base speed. The estimates describe the parameters {circumflex over (z)}=[θ/Θ,ω/Ω]′ with estimation error {tilde over (z)}={circumflex over (z)}−z=[{tilde over (θ)}/Θ,{tilde over (ω)}/Ω]′. The residual function of Equation (1) results from Equation (5) defining the state x=iαβ and input u=
r({circumflex over (z)})=(LΣI+LΔ
where iαβ, iαβ,
The estimation problem of Equation (2) can be solved numerically in real-time. The solver (implementing the derivation process to obtain a solution in
In some embodiments, estimates can be derived using numerical computation techniques. In one example implementation, at each sampling instant, a numerical solver obtains the stationary point of the cost function
{circumflex over (z)}j+1={circumflex over (z)}j+αjΔj.
The stepsize αj may be chosen with a suitable linesearch technique to accelerate and robustify convergence. An Example of a linesearch technique that can be used is the “golden section” search technique. The step Δj can be determined with first or second order methods.
The nonlinear conjugate gradient method is a first order method that identifies a stationary point of a differentiable cost function. It avoids the “zig-zag” nature of the steepest descent method by following the conjugate direction Δj=−∇c({circumflex over (z)}j)+βjΔj−1 (with Δ0=−∇c({circumflex over (z)}j)). The parameter βj can be computed using several formulae, including, for example, the Fletcher-Reeves formula which provides βj=∥∇c({circumflex over (z)}j)∥2/∥∇c({circumflex over (z)}j−1)∥2. The conjugate gradient method is observed to identify estimates robustly even if the cost is quasi-convex. The second order Newton method identifies the roots of a twice differentiable function by approximating the function with its second order Taylor series in {circumflex over (z)}j. This approximation can be solved for its minimum resulting in Δj=−−1({circumflex over (z)}j)∇c({circumflex over (z)}j). The Newton method converges significantly faster than the conjugate gradient method in convex problems, but is less reliable in quasi-convex regions. A reference solver may be implemented that combines the benefits of the gradient and Newton method. Since ∇c({circumflex over (z)}j) and ({circumflex over (z)}j) are computed at each time step, the solver can check efficiently for strict convexity and quasi-convexity, resulting in the step
If {circumflex over (z)}j is in the strictly convex region, the Newton step can be employed to maximize convergence. If {circumflex over (z)}j is in the quasi-convex region, the conjugate gradient step is used to increase the region of convergence. Thus, in some embodiments, the following estimation process can be executed at each sampling instant:
Obtain guess {circumflex over (z)}g by extrapolating previous estimate
while j < Nx,max and ∥Δj∥ > ϵ do
Compute Δj according to the above expression
Compute αj with golden section line search
{circumflex over (z)}j+1 ← {circumflex over (z)}j + αjΔj, j ← j + 1
end while
Return {circumflex over (z)}j
If the problem lacks quasi-convexity, the solver cannot issue a meaningful estimate. Instead, the guess {circumflex over (z)}g may be returned (which may correspond to the extrapolated estimate from the previous sample).
In some examples, to obtain a meaningful estimate, the cost function should be strictly convex in a neighborhood of the origin, which depends on {dot over (i)}αβ, iαβ,
In some embodiments, and as noted above, a perturbation signal that is effective in improving robustness (and thus reducing estimation error) of the cost functions (defined for a set of measurements) is a signal that includes, at least in part, linear slopes. An example of such a signal is a triangular signal whose rising and falling portions have slopes that exceed some minimum slope threshold. The cost function E(0) is known to be strongly convex ((˜0)m>0). The strength m is represented as:
where d1, d2, and d3, are defined according to:
d1=2Θ2(({dot over (ξ)}d+ωξq)2+({dot over (ξ)}q+ωξd)2)=2Θ2∥{dot over (ξ)}dq−ωJξdq∥
d2=2ΘΩ(({dot over (ξ)}dξd+{dot over (ξ)}ξq)2+({dot over (ξ)}q+ωξd)2)=2ΘΩ{dot over (ξ)}dqξdq
d3=2Ω2(ξd2+ξq2)=2Ω2∥ξdq∥2
The parameter m can be small, e.g., at ω=0, which compromises the robustness properties such that a small error w could result in a large estimation error {tilde over (z)}w. A minimum m, i.e., a minimum convexity of the cost function in the origin, can be guaranteed (under most circumstances, although not always in surface mount (isotropic) permanent magnet synchronous machines) with an appropriate zero-mean perturbation. For simplicity of notation, assume that near steady-state conditions, where {dot over (ξ)}dq is predominantly created by a perturbation signal. It can be shown that any zero-mean perturbation {dot over (ξ)}dq=γJξdq, where γ∈ satisfies |γ−ω|≥Ω/Θ implies m=2Ω2∥ξdq∥2. A perturbation {dot over (ξ)}dq=γJξdq is orthogonal to ξdq such that {dot over (ξ)}dqξdq=0, i.e., d2=0. By substitution, m can be represented as:
m=λmin(H{tilde over (c)}(0))=min{2Θ2∥{dot over (ξ)}dq−ωJξdq∥2,2Ω2∥ξdq∥2}=2∥ξdq∥2·min{(γ−ω)2Θ2,Ω2}
Hence, m=2Ω2∥ξdq∥2 if |γ−ω|Θ≥Ω. Therefore, any perturbation, which satisfies {dot over (ξ)}dq=γJξdq with |γ−ω|≥Ω/Θ, guarantees an estimation error of:
It is possible to construct a perturbation current ip,dq that results in {dot over (i)}p,dq={dot over (i)}dq, and satisfies:
where γp=ω+Ω/Θ∈>0 and γn=ω−Ω/Θ∈<0 define the minimum rising and falling slopes, respectively. The constant (minimum) slopes define the following zero-mean triangular signal:
with duty cycle d and perturbation magnitude Ip defined by:
With reference to
It is noted that machines with high
require a small period T, i.e., a high frequency perturbation, such that Ip is a reasonable compromise in terms of robustness. Also, the resulting slopes can exceed the capabilities of a current control loop. In such cases, a triangular current perturbation can be mapped onto a rectangular voltage signal that is actuated by a PWM module.
As noted, one way to improve the performance of the sensorless direct position and speed estimation for an electric motor is through the use of a selective filter (e.g., such as the selective filter 154) that is applied to the most recent (currently) estimates derived by the optimization process (e.g., via the optimization unit 152 of
In some embodiments, the selective filtering approach uses cost function properties to perform the filtering operations. The cost function ck(·) is required to be strictly convex on k such that a meaningful estimate can be issued. Thus, this concept requires that the cost function be strictly convex in the estimate, or generalizing strongly convex, i.e. (zk)mk>0, where mk=λmin ((zk)) is the minimum eigenvalue of the Hessian evaluated in zk. Linearizing the residual rk(·) in zk, it is possible to link strength of convexity with the estimation error due to a disturbance. Introducing the robustness factor ρk=√{square root over (mk)}/2, it can be shown that ∥{tilde over (z)}k*∥≤∥wk∥/ρk is a tight upper bound on the estimation error. Since the disturbance magnitude is finite, i.e., ∥wk∥≤W, the estimation error magnitude ∥{tilde over (z)}k*∥ depends on ρk. This property is shown empirically in the graphs of
In practice, wk is unknown. However, the eigenvalues of the cost function mk, and therefore ρk, are revealed by the Newton solver. Since, samples with low ρk have a poor robustness against disturbances, it is feasible to selectively filter samples where ρk<ρmin. Such filtering operation can be implemented, for example, based on the use of an “if” statement at the output of the solver/optimizer, which replaces each sample lacking robustness with, in some embodiments, the initial guess or a previous estimate (e.g., a previous computed by the optimization unit 152, or the filtered output of the unit 150).
As further noted above, in some situations, another filtering approach that can be used with the selective filter, or instead of it, is to apply a filter (such as the filter 158 of
Over short horizons, the speed can often be assumed to be constant without excessive errors. In testing and evaluations performed for the implementations described herein, it has been found that the speed can be assumed to vary linearly over the horizon, i.e., {circumflex over (ω)}k+1*={circumflex over (ω)}k*+a, for higher accuracy. This requirement can be written as an equation system that fits the absolute speed,
It is noted that the assumption of a linear speed variation is fairly accurate for N={1, 2} in a sampled system, and is just an approximation otherwise (i.e., accuracy decreases as N increases). It is possible to increase the accuracy by introducing higher order polynomials but at the expense of an increased computation complexity. Furthermore, the estimates should fit the equation {circumflex over (θ)}k+1*={circumflex over (θ)}k*+Ts{circumflex over (ω)}k*. This requirement can be written as an equation system that fits the differential position,
The absolute position results from the integration of the speed with initial offset. This system results in the requirement
These systems can be combined and written in matrix form Hξ=F, where ξ=[a, b, c]′ and F=[{circumflex over (ω)}k*, . . . , {circumflex over (ω)}k−N*, {circumflex over (θ)}k*−{circumflex over (θ)}k−1*, . . . , {circumflex over (θ)}k−N+1*−{circumflex over (θ)}k−N*, {circumflex over (θ)}k*, . . . {circumflex over (θ)}k−N*]′, and:
The above equation system is overdetermined for N>0. Hence, the variable can be fitted in a least-squares sense. The result is provided by ξ=H†F, where ·† denotes the Moore-Penrose pseudoinverse. The computation is feasible in real-time since H is constant and H† can be stored in memory. The resulting FIR filter thus solves a least-squares problem over a moving horizon N. It issues the fit ξ=[a, b, c]′, where b={circumflex over (ω)}f,k* and c={circumflex over (θ)}f,k* are the filtered position and speed, respectively. For N=0, the fit will return the original values b={circumflex over (ω)}f,k*={circumflex over (ω)}k* and c={circumflex over (θ)}f,k*={circumflex over (θ)}k*.
As noted above, in some embodiments, a phase-locked loop implementation may be included with the output filter 156 of the direct estimation unit 150, in order to refine the speed and position estimates through a PLL tracking operation. For large N, the filter 158 (e.g., FIR filter) can become computationally heavy for real-time implementations since it requires 3N floating point multiplications and additions. An alternative is the phase-locked loop (PLL), which may be used in conjunction with the selective filter 154 and/or the FIR filter 158, or separately and independently from the selective filter 154 or the FIR filter 158.
A PLL typically tracks the position and co-estimates speed (although the latter is typically noisy for high PLL gains, i.e., high PLL bandwidths). However, direct estimation (e.g., using the direct estimation unit 150) provides both a position and speed signal estimates. Therefore, two PLL circuits can be used, one for refined position estimation and one for refined speed estimation.
The position-estimation PLL uses, in some implementations, the typical layout augmented with a speed feed-forward term. The position estimation PLL relies primarily on the {circumflex over (θ)}* input to issue a filtered position estimate {circumflex over (θ)}f* with the transfer function
The speed-estimation PLL follows a similar structure but may use a slow feedback (k2<<k1) to remove a speed offset with respect to the position increment. Furthermore, a low-pass filter is added to limit the bandwidth of the speed feed-forward term. The speed-estimation PLL relies primarily on the {circumflex over (θ)}* input to issue a filtered speed estimate {circumflex over (ω)}f* with the transfer function:
In the description provided herein, the structure of
With reference next to
The procedure 600 additionally includes deriving 620, based on the one or more measurement samples, instantaneous estimates for parameters characterizing one or more of a speed and a position of the electric motor according to an optimization process that is based on a cost function defined for the one or more measurement samples. The derivation may be performed, for example, by an implementation based on the direct estimation unit 150 of
With continued reference to
In some embodiments, and as noted, applying the filtering operation to the derived instantaneous estimates may further include determining the filtered values for the speed and position values for the electric motor according to independent phase locked loop units (such as the units 510 and 520 shown in
In some examples, the procedure 600 may further include applying a perturbation input signal to the electric motor drive. The perturbation input signal may have a magnitude that decreases as rotational speed of the electric motor drive increases. In some embodiments, the perturbation signal may include periodical portions of rising and falling sections approximating linear segments with slopes exceeding respective minimum slope thresholds required to increase robustness of a solution of the cost function for the one or more measurement samples to reduce variation of the solution for the cost function as a result of noise in the one or more measurement samples. For example, the periodical signal may include a triangular periodical signal with rising and falling slopes exceeding the respective minimum required slope thresholds.
The procedure 650 further includes selecting 680 as output values of the optimization process one of: i) the derived instantaneous estimates in response to a determination that a computed convexity of the cost function around the derived instantaneous estimates is greater than or equal to a convexity threshold value, or ii) previous instantaneous estimates, derived based on previous one or more measurement samples for the electric motor drive, without using the presently derived instantaneous values, when the convexity of the cost function around the derived instantaneous estimates is below the convexity threshold value. Thus, in such examples, the procedure 650 applies a selective filter (such as the filter 154 of
Continuing with
To improve robustness of the derived estimates, in some embodiments, the procedure 650 may additionally include applying a perturbation input signal to the electric motor drive. For example, a triangular perturbation signal, with slopes satisfying pre-determined criteria, may be injected into the electric motor drive control signaling.
Performing the various techniques and operations described herein may be facilitated by a controller system, such as a processor-based computing system (e.g., to perform the optimization process, perform the filtering operations, etc., of some the approaches described herein). Such a computing system may include a processor-based device such as a personal computer, a specialized computing device, and so forth, that typically includes a central processor unit or a processing core. In addition to the CPU, the system may include main memory, cache memory and bus interface circuits. The processor-based device may include a mass storage element, such as a hard drive (solid state hard drive, or other types of hard drive), or flash drive associated with the computer system. The computing system may further include a keyboard, or keypad, or some other user input interface, and a monitor, e.g., an LCD (liquid crystal display) monitor, that may be placed where a user can access them.
The processor-based device is configured to facilitate, for example, the implementation of high performance selective and output filter techniques for sensorless direct position and speed estimation. The storage device may thus include a computer program product that when executed on the processor-based device causes the processor-based device to perform operations to facilitate the implementation of procedures and operations described herein. The processor-based device may further include peripheral devices to enable input/output functionality. Such peripheral devices may include, for example, a CD-ROM drive and/or flash drive (e.g., a removable flash drive), or a network connection (e.g., implemented using a USB port and/or a wireless transceiver), for downloading related content to the connected system. Such peripheral devices may also be used for downloading software containing computer instructions to enable general operation of the respective system/device. Alternatively and/or additionally, in some embodiments, special purpose logic circuitry, e.g., an FPGA (field programmable gate array), an ASIC (application-specific integrated circuit), a DSP processor, etc., may be used in the implementation of the computing system. Other modules that may be included with the processor-based device are speakers, a sound card, a pointing device, e.g., a mouse or a trackball, by which the user can provide input to the computing system. The processor-based device may include an operating system, e.g., Windows XP® Microsoft Corporation operating system, Ubuntu operating system, etc.
Computer programs (also known as programs, software, software applications or code) include machine instructions for a programmable processor, and may be implemented in a high-level procedural and/or object-oriented programming language, and/or in assembly/machine language. As used herein, the term “machine-readable medium” refers to any non-transitory computer program product, apparatus and/or device (e.g., magnetic discs, optical disks, memory, Programmable Logic Devices (PLDs)) used to provide machine instructions and/or data to a programmable processor, including a non-transitory machine-readable medium that receives machine instructions as a machine-readable signal.
In some embodiments, any suitable computer readable media can be used for storing instructions for performing the processes/operations/procedures described herein. For example, in some embodiments computer readable media can be transitory or non-transitory. For example, non-transitory computer readable media can include media such as magnetic media (such as hard disks, floppy disks, etc.), optical media (such as compact discs, digital video discs, Blu-ray discs, etc.), semiconductor media (such as flash memory, electrically programmable read only memory (EPROM), electrically erasable programmable read only Memory (EEPROM), etc.), any suitable media that is not fleeting or not devoid of any semblance of permanence during transmission, and/or any suitable tangible media. As another example, transitory computer readable media can include signals on networks, in wires, conductors, optical fibers, circuits, any suitable media that is fleeting and devoid of any semblance of permanence during transmission, and/or any suitable intangible media.
In some implementations, a computer accessible non-transitory storage medium includes a database (also referred to as a “design structure” or “integrated circuit definition dataset”) representative of a system/architecture including some or all of the components of the control circuitry for an electric-motor-based system, including, for example, circuitry configured to determine speed and position estimates for a rotor of an electric motor, and to generate the control and driving signals to drive the electric motor, as more particularly described herein. In general, a computer accessible storage medium may include any non-transitory storage media accessible by a computer during use to provide instructions and/or data to the computer. For example, a computer accessible storage medium may include storage media such as magnetic or optical disks and semiconductor memories. Generally, the database representative of the system may be a database or other data structure which can be read by a program and used, directly or indirectly, to fabricate the hardware comprising the system. For example, the database may be a behavioral-level description or register-transfer level (RTL) description of the hardware functionality in a high-level design language (HDL) such as Verilog or VHDL, or some other language. The description may be read by a synthesis tool which may synthesize the description to produce a netlist comprising a list of gates from a synthesis library. The netlist comprises a set of gates which also represents the functionality of the hardware comprising the system. The netlist may then be placed and routed to produce a data set describing geometric shapes to be applied to masks. The masks may then be used in various semiconductor fabrication steps to produce a semiconductor circuit or circuits corresponding to the system. In other examples, the database may itself be the netlist (with or without the synthesis library) or the data set.
To test and evaluate the performance of some of the implementations described herein, several studies, simulations, and experiments were conducted. A permanent magnet synchronous machine (PMSM) testbench was implemented with the following parameters for the control and inverter stage (i.e., the motor drive):
a) DC voltage vc=800V;
b) PWM switching period Tsw=100 μs;
c) Sampling period Ts=50 μs;
d) Interlock time Ti=0.3 μs; and
e) Typical current sensor noise Iw≈0.5%.
The microcontroller used was 200 MHz TI C2000 Delfino processor. The electric motor used had the following attributes:
a) Base speed Ω=1800 rpm;
b) Rated torque Tr=29.7 Nm;
c) Pole pairs p=5;
d) Rated current Ir=10 A;
e) Rated d-axis inductance Ld=10.5 mH;
f) Rated q-axis inductance Lq=12.9 mH;
g) Rated PM flux ψ=349.1 mWb; and
h) Rated stator resistance R=0.4Ω
Some of the dynamic performance study results were obtained with a software-in-the-loop (SiL) platform, since that dynamic performance study requires an excessive transient load torque, which exceeded the capabilities of the available lab equipment by a factor 10-100 (in bandwidth and magnitude). Instead, the SiL platform executed the code used by the control and inverter stage circuitry for direct estimation and control, but replaced the physical test-bench with a high-fidelity model of the inverter (modeling on-voltage drops and dead-times) and motor (using flux-current maps that capture saturation and cross-saturation). Both, the experimental and SiL platform used peak and valley sampling such that the sampling frequency was twice the switching frequency.
In the experimentations and testing conducted herein, results were obtained using PWM vector control with 1 kHz bandwidth. To prevent direct estimation issues at standstill, a rotating voltage perturbation was injected at low speeds. The frequency was chosen to be 5 kHz, i.e. 5 times the bandwidth of the current controller to prevent any undesired coupling. The injection magnitude is chosen to be 120V, i.e., 15% of the dc voltage, at standstill. Increasing the speed |ω|, the injection magnitude was scaled down linearly to zero, with no voltage perturbation applied above 270 rpm (absolute speed), i.e., 15% of the rated speed. This perturbation was chosen as a compromise between power losses and robustness based on those illustrated in
With reference to
As discussed, the direct estimation does not require an output filter and the resulting estimates may be acceptable for some applications. However, the estimates can be noisy since direct estimation issues an independent position and speed estimate at each sampling instant. The error is higher at low speed where the robustness factor tends to be lower (at times it can be zero) and voltage disturbances, e.g., dead-times, or modeling errors result in increased estimation errors. The samples with low robustness factor are removed by selective filtering, thus reducing peak estimation errors, which is especially noticeable in the position error. Both approaches can be combined with FIR and dual-PLL filtering. The least-squares results (also referred to as the FIR results herein, although other filter types may be used) are reported using N=10 samples for filtering. The dual-PLL was tuned to the highest stable bandwidth on the test-bench, which corresponded to 1 kHz. In comparison, the FIR filter resulted in a cleaner position estimate but increased speed estimation noise (while achieving a higher bandwidth).
The dynamic performance of direct estimation with output filters was evaluated by setting the estimator (and filters) to an erroneous estimate and measuring the convergence times to the correct values.
As a second test, the dynamic performance of direct estimation was evaluated by applying an excessive (400 Nm) transient (1 kHz) load torque signal, which exceeds the induction-machine dyno capabilities by a factor 10 in magnitude and bandwidth. Hence, the results presented in
The selective filter performance was evaluated at zero speed (where the robustness factor ρ tends to be low).
The least-squares (FIR) filter performance was evaluated at zero speed (where the estimation noise tends to be high).
Although particular embodiments have been disclosed herein in detail, this has been done by way of example for purposes of illustration only, and is not intended to be limiting with respect to the scope of the appended claims, which follow. Features of the disclosed embodiments can be combined, rearranged, etc., within the scope of the invention to produce more embodiments. Some other aspects, advantages, and modifications are considered to be within the scope of the claims provided below. The claims presented are representative of at least some of the embodiments and features disclosed herein. Other unclaimed embodiments and features are also contemplated.
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